[Engineering20] Dark, Beyond Deep: A Paradigm Shift to Cognitive AI with Humanlike Common Sense

Abstract

Recent progress in deep learning is essentially based on a “big data for small tasks” paradigm, under which massive amounts of data are used to train a classifier for a single narrow task. In this paper, we call for a shift that flips this paradigm upside down. Specifically, we propose a “small data for big tasks” paradigm, wherein a single AI system is challenged to develop “common sense,” enabling it to solve a wide range of tasks with little training data. We illustrate the potential power of this new paradigm by reviewing models of common sense that synthesize recent breakthroughs in both machine and human vision. We identify functionality, physics, intent, causality, and utility (FPICU) as the five core domains of cognitive AI with humanlike common sense. When taken as a unified concept, FPICU is concerned with the questions of “why” and “how,” beyond the dominant “what” and “where” framework for understanding vision. They are invisible in terms of pixels but nevertheless drive the creation, maintenance, and development of visual scenes. We therefore coin them the “dark matter” of vision. Just as our universe cannot be understood by merely studying observable matter, we argue that vision cannot be understood without studying FPICU. We demonstrate the power of this perspective to develop cognitive AI systems with humanlike common sense by showing how to observe and apply FPICU with little training data to solve a wide range of challenging tasks, including tool use, planning, utility inference, and social learning. In summary, we argue that the next generation of AI must embrace “dark” humanlike common sense for solving novel tasks.

Type
Publication
In Engineering
Yixin Zhu
Yixin Zhu
Assistant Professor

I build humanlike AI.

Tao Gao
Tao Gao
Associate Professor
Lifeng Fan
Lifeng Fan
Research Scientist
Siyuan Huang
Siyuan Huang
Research Scientist
Mark Edmonds
Mark Edmonds
Senior Software Engineer
Hangxin Liu
Hangxin Liu
Research Scientist
Feng Gao
Feng Gao
Applied Scientist
Chi Zhang
Chi Zhang
Research Scientist
Siyuan Qi
Siyuan Qi
Research Scientist
Ying Nian Wu
Ying Nian Wu
Professor
Song-Chun Zhu
Song-Chun Zhu
Chair Professor

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